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An Inclusive Survey on Signature Recognition System

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Intelligent Systems Design and Applications (ISDA 2020)

Abstract

Attestation plays a crucial role to manage surveillance. So, need for authentication increases briskly. Because of the latest improvements in technology in a time where data rules everything, there is a high priority for security systems based on different biometric traits. Signature is one of the most extensively used biometric traits for verification of certain individuals. Signature plays an important role in different areas of application such as finance, banking, commercial, etc. However, in many cases, forged signatures may also be considered as original Signatures. Signatures are behavioral biometric traits and are mostly unique for each individual. Therefore, the signature verification system is one of the crucial systems that have to be produced with higher speeds and provide higher accuracy. Here in this paper, we propose different methods or techniques that help in increasing efficiency and gives the effectiveness of the overall system. We propose a method for each stage of the verification process and compare them with other alternative methods available.

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Correspondence to L. Agilandeeswari .

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Agilandeeswari, L., Arun, Y.N.K., Nikhil, C., Koushmitha, S., Chaithanya, A. (2021). An Inclusive Survey on Signature Recognition System. In: Abraham, A., Piuri, V., Gandhi, N., Siarry, P., Kaklauskas, A., Madureira, A. (eds) Intelligent Systems Design and Applications. ISDA 2020. Advances in Intelligent Systems and Computing, vol 1351. Springer, Cham. https://doi.org/10.1007/978-3-030-71187-0_98

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